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A copula-based joint return period approach to characterising extreme rainfall in West Java
by
Nabila, A
, Najib, M K
, Nurdiati, S
, Purnaba, I G P
in
Climate change
/ Climatic extremes
/ Consecutive dry days
/ Consecutive wet days
/ Copula
/ Datasets
/ Environmental risk
/ Extreme values
/ Extreme weather
/ Hypotheses
/ Joint Return Period
/ Normal distribution
/ Oceanic analysis
/ Precipitation
/ Probability distribution
/ Rain
/ Rainfall
/ Rainfall variability
/ Rainfall-climatic change relationships
/ Random variables
/ Risk reduction
/ Topography
/ West Java
/ Wet days
2025
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A copula-based joint return period approach to characterising extreme rainfall in West Java
by
Nabila, A
, Najib, M K
, Nurdiati, S
, Purnaba, I G P
in
Climate change
/ Climatic extremes
/ Consecutive dry days
/ Consecutive wet days
/ Copula
/ Datasets
/ Environmental risk
/ Extreme values
/ Extreme weather
/ Hypotheses
/ Joint Return Period
/ Normal distribution
/ Oceanic analysis
/ Precipitation
/ Probability distribution
/ Rain
/ Rainfall
/ Rainfall variability
/ Rainfall-climatic change relationships
/ Random variables
/ Risk reduction
/ Topography
/ West Java
/ Wet days
2025
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A copula-based joint return period approach to characterising extreme rainfall in West Java
by
Nabila, A
, Najib, M K
, Nurdiati, S
, Purnaba, I G P
in
Climate change
/ Climatic extremes
/ Consecutive dry days
/ Consecutive wet days
/ Copula
/ Datasets
/ Environmental risk
/ Extreme values
/ Extreme weather
/ Hypotheses
/ Joint Return Period
/ Normal distribution
/ Oceanic analysis
/ Precipitation
/ Probability distribution
/ Rain
/ Rainfall
/ Rainfall variability
/ Rainfall-climatic change relationships
/ Random variables
/ Risk reduction
/ Topography
/ West Java
/ Wet days
2025
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A copula-based joint return period approach to characterising extreme rainfall in West Java
Journal Article
A copula-based joint return period approach to characterising extreme rainfall in West Java
2025
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Overview
Climate change presents recurring challenges in understanding extreme weather events, particularly the persistence of dry and wet periods. West Java is among the region's most vulnerable to such rainfall variability. This study analyses the relationship between consecutive dry days (CDD) and consecutive wet days (CWD). It estimates joint return periods (JRP) using a copula-based approach to assess the spatial characteristics of climate extremes in West Java. Marginal distributions were fitted for each indicator, followed by copula modelling using the Inference Function for Margins method and model selection based on the Akaike's information criterion (AIC). The inverse Gaussian (ING) distribution was most suitable for CDD, while the generalised extreme value (GEV) distribution best represented CWD. We found that the Gaussian and Frank copulas best captured the overall dependence structure between CDD and CWD. JRP analysis showed that simultaneous extremes (AND scheme) were significantly rarer than single-variable extremes (OR scheme). These findings provide valuable input for identifying high-risk areas and developing more locally adaptive climate risk mitigation strategies.
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